Abstract:
Cognitive state estimation shows the subjective mental changes with the environmental
constraints which can be used for diagnosis of cognitive behavior. A cognitive model will
support and facilitate the development of affective systems in emotion studies and act as a
unifying platform in physiological research area. In recent years, there has been an increasing
interest in applying techniques from the domains of nonlinear analysis in studying the mental
behavior of a dynamical system from an experimental time series such as EEG signals. A lot
of research has been carried out to study on human brain response while the subject is in
relax or performing different mental task with sustained attention or listening to different
kinds of music, as well as different emotion related activity. High frequency component and
low frequency component contained in a brain signal with different mental activity is proven
as a cognitive factor to human emotion recognition system and can be shown through the
variations of human brain signal. Electroencephalographic (EEG) technology has enabled
effective measurement of human brain activity, as functional and physiological changes
within the brain may be registered by EEG signals from the variations of alpha, beta, delta,
theta frequency bands. The EEG signals are collected from several healthy adult subjects and
processed using signal processing algorithms in C/C++ source code and MATLAB to extract
the effective features to classify the emotional states through the spatial and temporal
analysis, discrete wavelet transform, fast Fourier transform etc. Useful information is
extracted from the processing of EEG signal, and different machine learning algorithm are
used to identify the different brain response from the signals to classify the emotional states
using multiclass support vector machine (MCSVM). The classification of different emotions
is validated using artificial intelligent techniques, i.e. neural network.
The recognition of human emotion plays a vital role in physiological research area but in case
of real-time application and practical hardware implementation of human emotion based
systems a mathematical background of emotions is really needed. Mathematical modeling of
emotional states plays a significant role in this scope which can correlate between human
cognition, emotion and mental behavior. In this work, new approach is proposed to model the
emotional states with mathematical expressions based on wavelet analysis and trust region
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algorithm for the non-linearity and non-stationarity of EEG signal. Daubechies4 wavelet
function ("db4") is applied on different recognized emotional states such as relax, memory,
pleasant, fear, motor action (MA), enjoying music (EM) to extract the wavelet coefficients of
these different states. The emotional states are modeled with different mathematical
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expressions. The brain signals are composed of composite frequency components. So, the
proposed model of the emotional states will be the sum of the sinusoidal functions consisting
the composite frequency components. To model the emotional states the coefficients can be
obtained by trust-region algorithm for non-linear EEG data which can be verified with these
subband wavelet coefficients. The adjusted R- square percentage and the sum of square error
will optimize the performance of proposed model. The higher rate of adjusted R-square
percentage and lower percentage of SSE and RMSE will validate the developed cognitive
model.
To propose a proper mathematical model of the brain signal of different emotional states
proper effective channel is needed to select in order to reduce the feature size without any
performance degradation. In this work a way is develop to propose the effective channel for
emotion classification based on temporal and spectral analysis. The performance of the
proper selected channel is more robust to classify and model the effective emotional states.
Description:
This thesis is submitted to the Department of Electrical and Electronic Engineering, Khulna University of Engineering & Technology in partial fulfillment of the requirements for the degree of Master of Science in Electrical and Electronic Engineering, March 2016.
Cataloged from PDF Version of Thesis.
Includes bibliographical references (pages 118-125).